Physics-constrained unsupervised deep learning for accelerated diffusion MRI

buir.advisorÇukur, Emine Ülkü Sarıtaş
dc.contributor.authorTopcu, Atakan
dc.date.accessioned2025-08-18T06:59:05Z
dc.date.available2025-08-18T06:59:05Z
dc.date.issued2025-08
dc.date.submitted2025-08-14
dc.descriptionCataloged from PDF version of article.
dc.descriptionIncludes bibliographical references (leaves 61-70)
dc.description.abstractDiffusion Magnetic Resonance Imaging (dMRI) is a noninvasive technique that probes the microscopic Brownian movement of water molecules within neural tissues, providing insights into the underlying microstructural architecture. In dMRI, the displacement of spins is encoded in a domain called q-space through the use of diffusion-sensitizing gradients. Classical dMRI models, such as diffu sion tensor imaging (DTI), require only a few samples in q-space, but fall short in resolving crossing or diverging fiber bundles. To address these limitations, High Angular Resolution Diffusion Imaging (HARDI) was introduced to enhance f iber characterization by densely sampling the q-space across multiple spherical shells defined by different b-values, thereby detecting several fiber orientations within a single voxel. Building on this framework, advanced multi-shell tech niques such as Multi-Shell Spherical Deconvolution (MSMT-CSD) and Neurite Orientation Dispersion and Density Imaging (NODDI) have been developed, of fering refined insights into complex microstructural features. Nevertheless, the requirement for densely sampling q-space renders advanced dMRI techniques ex tremely time-consuming and impractical for clinical use. This thesis proposes a deep unsupervised Q-space Upsampling via physics-Constrained Coordinate based Implicit network (QUCCI) to accelerate multi-shell dMRI. QUCCI models the underlying volume as a continuous function in both spatial coordinates and q-space, enabling the sampling of q-space along arbitrary directions without the constraints of fixed sampling schemes. An encoder maps coordinates to a la tent code, and an MLP predicts the signal, allowing arbitrary q-space sampling without large training datasets or vendor harmonization. Physics-based regu larization stabilizes learning. Tested on 10 subjects at R = 10, 15, 22.5, and extended to joint q-space interpolation plus in-plane super-resolution for submil limeter whole-brain dMRI, QUCCI surpasses a recent deep-learning competitor, a least-squares baseline, and raw undersampled data. Slice-, subject-, and metric level evaluations, and downstream DTI, MSMT-CSD, and NODDI maps confirm its superior fidelity. QUCCI enables accelerated dMRI with minimal information loss, advancing the clinical feasibility of advanced multi-shell methods.
dc.description.statementofresponsibilityby Atakan Topcu
dc.embargo.release2026-02-14
dc.format.extentxix, 70 leaves : illustrations, charts ; 30 cm.
dc.identifier.isbnB163184
dc.identifier.urihttps://hdl.handle.net/11693/117444
dc.language.isoEnglish
dc.subjectDiffusion magnetic resonance imaging
dc.subjectMulti-shell diffusion imaging
dc.subjectQ-space
dc.subjectDeep learning
dc.subjectNeural fields
dc.subjectUnsupervised learning
dc.titlePhysics-constrained unsupervised deep learning for accelerated diffusion MRI
dc.title.alternativeHızlandırılmış difüzyon MRG için fizik kısıtlamalı denetimsiz derin öğrenme
dc.typeThesis
thesis.degree.disciplineElectrical and Electronic Engineering
thesis.degree.grantorBilkent University
thesis.degree.levelMaster's
thesis.degree.nameMS (Master of Science)

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